CYAIGTHCLGApr 12, 2021

A Conceptual Framework for Establishing Trust in Real World Intelligent Systems

arXiv:2104.05432v15 citations
Originality Synthesis-oriented
AI Analysis

This addresses trust issues for users of real-world intelligent systems, but it is incremental as it builds on existing ideas of user interaction and explanation.

The paper tackles the problem of trust in intelligent systems with emergent elements by proposing a conceptual framework that enables users to interact with and explore system results, thereby increasing trust through pattern comparison and expectation evolution.

Intelligent information systems that contain emergent elements often encounter trust problems because results do not get sufficiently explained and the procedure itself can not be fully retraced. This is caused by a control flow depending either on stochastic elements or on the structure and relevance of the input data. Trust in such algorithms can be established by letting users interact with the system so that they can explore results and find patterns that can be compared with their expected solution. Reflecting features and patterns of human understanding of a domain against algorithmic results can create awareness of such patterns and may increase the trust that a user has in the solution. If expectations are not met, close inspection can be used to decide whether a solution conforms to the expectations or whether it goes beyond the expected. By either accepting or rejecting a solution, the user's set of expectations evolves and a learning process for the users is established. In this paper we present a conceptual framework that reflects and supports this process. The framework is the result of an analysis of two exemplary case studies from two different disciplines with information systems that assist experts in their complex tasks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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